Staff/Senior Full-Stack Engineer
akeno · software
staff
Salary Range (USD)
Negotiable
Location
Hamburg, Germany
Visa Support
Not mentioned
Funding Stage
Unknown
Job Responsibilities
- • Develop end‑to‑end features across the stack
- • Design and implement UX components
- • Architect database schemas and handle MVCC, transaction isolation, partitioning
- • Make architectural decisions between REST and GraphQL
- • Write integration tests and ensure product quality
- • Collaborate with peers to deliver product‑focused solutions
Required Skills
Full‑stack developmentReactUX designDatabase design and optimizationREST APIsGraphQL knowledgeIntegration testingDAO and query builder patternsStrong problem‑solving and product focus
Engineering Culture & Tech Stack
ReactRESTGraphQL
product-focused
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akeno | Staff/Senior Full-Stack Engineer | Hamburg, Germany (ONSITE) | https://www.akeno.ai/
We’re doing planning software for huge factories, predominantly in the chemical industry where processes are complex and there is always a fun new edge case or uncertainty to account for.
You’d love to work here if you’re a REAL full-stack! Not a React programmer who has used an ORM once but someone who knows both about aspects of UX design, the nitty gritty of DBs (MVCC, transaction isolation levels, partitioning, …), and everything in between. You’ve usually been the strongest in these areas within your company and finally want to work in an environment where you have peers, not people you first need to train.
So if you can argue why REST in a lot of situations is a smarter choice than GraphQL, why doing integration tests might be better than blindly following the testing pyramid, why DAOs or query builders are superior to ORMS, or in general you have “seen stuff and fixed shit” but also care more about a successful product than tech stuff, this might be the environment for you to shine.
https://apply.workable.com/akeno/j/D49DFF9F6E/
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